Modeling Joint Relationship and Design Scenarios Between Precipitation, Surface Temperature, and Atmospheric Precipitable Water Over Mainland China

Abstract This study employs copula model to discuss joint relationship and design scenarios between precipitation (P), surface temperature (T), and precipitable water (PW) in seven regions and mainland China over 1980–2016 within a bivariate framework. Markov Chain Monte Carlo modeling in a Bayesian...

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Main Authors: Olusola Olaitan Ayantobo, Jiahua Wei, Guangqian Wang
Format: Article
Language:English
Published: American Geophysical Union (AGU) 2021-04-01
Series:Earth and Space Science
Subjects:
Online Access:https://doi.org/10.1029/2020EA001513
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spelling doaj-2bace774d8f640599c2fb623676792a02021-05-17T18:35:37ZengAmerican Geophysical Union (AGU)Earth and Space Science2333-50842021-04-0184n/an/a10.1029/2020EA001513Modeling Joint Relationship and Design Scenarios Between Precipitation, Surface Temperature, and Atmospheric Precipitable Water Over Mainland ChinaOlusola Olaitan Ayantobo0Jiahua Wei1Guangqian Wang2Department of Hydraulic Engineering State Key Laboratory of Hydroscience and Engineering Tsinghua University Beijing ChinaDepartment of Hydraulic Engineering State Key Laboratory of Hydroscience and Engineering Tsinghua University Beijing ChinaDepartment of Hydraulic Engineering State Key Laboratory of Hydroscience and Engineering Tsinghua University Beijing ChinaAbstract This study employs copula model to discuss joint relationship and design scenarios between precipitation (P), surface temperature (T), and precipitable water (PW) in seven regions and mainland China over 1980–2016 within a bivariate framework. Markov Chain Monte Carlo modeling in a Bayesian framework was applied to calculate copula parameters while best fitted copulas were assessed using Akaike Information Criterion (AIC), Bayesian Information Criterion (BIC), Root Mean Squared Error (RMSE), Nash‐Sutcliffe Efficiency (NSE), and maximum likelihood criteria. Results showed that the spatial variations of P decreased from South to Northwest, T decreased from South to North and from East to West. Distributions of P and T were similar, with higher values in regions c and d. PW was higher in the south, with more than 64.54 mm in the southwest, 25 mm in the north‐central. The correlation between PW and P as well as PW and T were higher than 0.74. Birnbaum Saunders distribution was considered appropriate to fit P in regions a and f while P and PW in other regions are good with Generalized Pareto. T performed better with generalized extreme in all regions. Moreover, Gumbel, Frank, and Joe copulas provided good fit for PW and P in regions b, f, and g, respectively while in regions a, c, d, and e, Nelson provided perfect fit. For PW and T, Nelson was a good fit in all regions. The bivariate probabilities and design scenarios in various regions suggest tremendous variations, with regions having high probabilities associated with low return periods. We showed that joint analysis of climate variables gives more robust design quantiles.https://doi.org/10.1029/2020EA001513Bayesian frameworkcopula functionMarkov Chain Monte Carlo simulationprecipitationprecipitable watertemperature
collection DOAJ
language English
format Article
sources DOAJ
author Olusola Olaitan Ayantobo
Jiahua Wei
Guangqian Wang
spellingShingle Olusola Olaitan Ayantobo
Jiahua Wei
Guangqian Wang
Modeling Joint Relationship and Design Scenarios Between Precipitation, Surface Temperature, and Atmospheric Precipitable Water Over Mainland China
Earth and Space Science
Bayesian framework
copula function
Markov Chain Monte Carlo simulation
precipitation
precipitable water
temperature
author_facet Olusola Olaitan Ayantobo
Jiahua Wei
Guangqian Wang
author_sort Olusola Olaitan Ayantobo
title Modeling Joint Relationship and Design Scenarios Between Precipitation, Surface Temperature, and Atmospheric Precipitable Water Over Mainland China
title_short Modeling Joint Relationship and Design Scenarios Between Precipitation, Surface Temperature, and Atmospheric Precipitable Water Over Mainland China
title_full Modeling Joint Relationship and Design Scenarios Between Precipitation, Surface Temperature, and Atmospheric Precipitable Water Over Mainland China
title_fullStr Modeling Joint Relationship and Design Scenarios Between Precipitation, Surface Temperature, and Atmospheric Precipitable Water Over Mainland China
title_full_unstemmed Modeling Joint Relationship and Design Scenarios Between Precipitation, Surface Temperature, and Atmospheric Precipitable Water Over Mainland China
title_sort modeling joint relationship and design scenarios between precipitation, surface temperature, and atmospheric precipitable water over mainland china
publisher American Geophysical Union (AGU)
series Earth and Space Science
issn 2333-5084
publishDate 2021-04-01
description Abstract This study employs copula model to discuss joint relationship and design scenarios between precipitation (P), surface temperature (T), and precipitable water (PW) in seven regions and mainland China over 1980–2016 within a bivariate framework. Markov Chain Monte Carlo modeling in a Bayesian framework was applied to calculate copula parameters while best fitted copulas were assessed using Akaike Information Criterion (AIC), Bayesian Information Criterion (BIC), Root Mean Squared Error (RMSE), Nash‐Sutcliffe Efficiency (NSE), and maximum likelihood criteria. Results showed that the spatial variations of P decreased from South to Northwest, T decreased from South to North and from East to West. Distributions of P and T were similar, with higher values in regions c and d. PW was higher in the south, with more than 64.54 mm in the southwest, 25 mm in the north‐central. The correlation between PW and P as well as PW and T were higher than 0.74. Birnbaum Saunders distribution was considered appropriate to fit P in regions a and f while P and PW in other regions are good with Generalized Pareto. T performed better with generalized extreme in all regions. Moreover, Gumbel, Frank, and Joe copulas provided good fit for PW and P in regions b, f, and g, respectively while in regions a, c, d, and e, Nelson provided perfect fit. For PW and T, Nelson was a good fit in all regions. The bivariate probabilities and design scenarios in various regions suggest tremendous variations, with regions having high probabilities associated with low return periods. We showed that joint analysis of climate variables gives more robust design quantiles.
topic Bayesian framework
copula function
Markov Chain Monte Carlo simulation
precipitation
precipitable water
temperature
url https://doi.org/10.1029/2020EA001513
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